The deployment of an expert system running over a wireless acoustic sensors network made up of bioacoustic monitoring devices that recognise bird species from their sounds would enable the automation of many tasks of ecological value, including the analysis of bird population composition or the detection of endangered species in areas of environmental interest. Endowing these devices with accurate audio classification capabilities is possible thanks to the latest advances in artificial intelligence, among which deep learning techniques excel. However, a key issue to make bioacoustic devices affordable is the use of small footprint deep neural networks that can be embedded in resource and battery constrained hardware platforms. For this reason, this work presents a critical comparative analysis between two heavy and large footprint deep neural networks (VGG16 and ResNet50) and a lightweight alternative, MobileNetV2. Our experimental results reveal that MobileNetV2 achieves an average F1-score less than a 5\% lower than ResNet50 (0.789 vs. 0.834), performing better than VGG16 with a footprint size nearly 40 times smaller. Moreover, to compare the models, we have created and made public the Western Mediterranean Wetland Birds dataset, consisting of 201.6 minutes and 5,795 audio excerpts of 20 endemic bird species of the Aiguamolls de l'Empord\`a Natural Park.
翻译:在由生物声学监测装置组成的无线声频传感器网络上部署一个专家系统,承认鸟类的声学监测装置,这将使许多具有生态价值的任务自动化,包括分析鸟类人口组成或在环境利益领域发现濒危物种。由于人工智能的最新进步,这些装置具有准确的音频分类能力,其中最先进的是深层学习技术。然而,使生物声学装置负担得起的一个关键问题是使用小型足迹深厚的神经网络,这些网络可以嵌入资源和电池受限制的硬件平台。为此,这项工作对两组大型和重型足迹深度神经网络(VGG16和ResNet50)和轻质替代物(MiveNetV2)。 我们的实验结果表明,移动网络2的平均F1芯比ResNet50低5英寸(0.789对0.834),其功能比VGG16要好,其足迹大小几乎要小40倍。此外,为了比较模型,我们创建并公开了西地中海湿地鸟数据集,由201.6分钟的Amaimal imal imal amalial amages 205.95 alimarial alimasationsations.